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Exploringsocio-spatialinequalitiesinbike-sharingsystems:CasestudiesfromBrazilandSpain
ESTHERANAYA-BOIGCENTRE FOR ENVIRONMENTAL POL ICY - IMPER IAL COLLEGE LONDON
28th September2017,Manchester
Contents
vWhoisinvolved?vGeneralbackground,incl.decolonisingaspects.vStage1:TheBrazilianStudyvStage2:TheBarcelonaStudyvConclusions
Whoisinvolved?Brazilstudy:◦ AnaClaraDuranandThiagoHérick deSá,CentreforEpidemiologicalStudiesinNutritionandHealth,UniversityofSaoPaulo,SaoPaulo,Brazil
◦ EstherAnaya-Boig,CentreforEnvironmentalPolicy,ImperialCollegeLondon,London,UK
◦ JoshuaDanielShake,CentreforMetropolitanStudies,UniversityofSaoPaulo/BrazilianCentreofAnalysisandPlanning,SaoPaulo,Brazil
◦ LeandroMartinTotaro Garcia,NationalSchoolofPublicHealth,OswaldoCruzFoundation,RiodeJaneiro,Brazil
◦ LeandroFórnias MachadodeRezende,DepartmentofPreventiveMedicine,SchoolofMedicine,UniversityofSaoPaulo,SaoPaulo,Brazil
Barcelonastudy:◦ EstherAnaya-Boig,CentreforEnvironmentalPolicy,ImperialCollegeLondon,London,UK
◦ Àngel Cebollada i Frontera,DepartmentofGeography,AutonomousUniversityofBarcelona,Barcelona,Spain
TransferabilityremarksI
Populationdensity(inhabitants/km2)(2014 &2016)
Recife(BR) 7,133 SaoPaulo(BR) 7,913
Salvador(BR) 4,187 RiodeJaneiro(BR) 5,286
PortoAlegre(BR) 3,030 Barcelona(ES) 15,881!!
GINIcoefficient(2016)
Recife(BR) 0.689 SaoPaulo(BR) 0.645
Salvador(BR) 0,645 RiodeJaneiro(BR) 0.639
PortoAlegre(BR) 0.614 Barcelona(ES) 0.325
Ofthisstudy:◦ Interestingly,lessdatawasavailableinBarcelona(lesstransparency!)◦ InBraziliancitiestheinequalities arebiggerthaninBarcelona:
◦ Mobilityalternatives,urbanfeatures,modalsplit,culturalaspects… quitedifferentinoneplaceandintheother.Populationdensityisarelevantindicatorsthatseemcounter-intuitive:
TransferabilityremarksIIOfthisstudy:◦ Theelementofthestudywherebuiltenvironmentanditsperceptionandusehasimpactedthemostwasinthedefinitionofthecatchmentareas.
1. Wefirsttriedtofindwillingnesstowalktothenearestbike-sharingstation.Ofcourse,thiswasunavailable(wishlist indicator).
2. Theperceptionoftheacceptablewalkingdistancetoastationcouldbedeterminedbytheperceptionofthedistancesinthewholenetwork(assumingtheuserhadthatknowledge).Sowedecidedtocalculatetheaveragedistancebetweentheneareststations,usingtheNearestNeighbourAnalysis:
Braziliancities:500mBarcelona:150m!!
EquityBike-sharingisapublicservice,butforwhom?
HEALTHandotherBENEFITSOFCYCLING.Basedonmodeshift,healthimpactassessmentattributeshealthbenefitstobike-sharing(iftheshiftisnotfromwalking).
ACCESSTOAPUBLICSERVICE.Anypopulationgroupsleftaside?
TheBrazilianStudyPapersubmittedtotheJournalforTransportandHealth,acceptedwithreviews.
METHODS
◦ Spatialanalysis:catchmentareas(buffersaroundthestations)oftheresidentsandgeo-referencedindicatorsforsocio-demographics(headofthehouseholdincomeandethnicity).ØSource:Braziliancensus2010
◦ Comparisonbetweenbike-sharingusersandgeneralpopulationforsex,age,educationlevelandhouseholdincome.ØSource:InterceptsurveybytheBrazilianCentreofAnalysisandPlanning-CEBRAP,2014.
◦ Publicprocurementanalysisoncasestudy(SãoPaulo):ØSources:Callfortendersandcontractualagreements,mediacoverage.
1a. Recife
1e. Rio de Janeiro
1c. Porto Alegre
1d. Sao Paulo
1b. Salvador
Bicycle-sharingsystemcatchmentareasinthe5selectedBrazilianstatecapitalsandneighborhood-levelmeanincome.
TheBrazilianStudyFINDINGS◦ Spatialanalysis:areascoveredbythesystems:◦ Encompass8to25%ofthecities’areasand6to18%ofthecities’population.◦ Favourwealthierandcentrallylocatedneighbourhoods.◦ Mean incomeoftheheadofthehouseholdwas1.6to2.3timesthecities’mean!◦ Have13to36%higherproportionofwhiteresidentsthancitywideaverage.
◦ Comparisonbetweenbike-sharingusersandgeneralpopulation:bike-shareusers:◦ Wereoverwhelminglyhighereducatedthanthegeneralpopulation.◦ Whostudiedlessthanhighschoolwerelessthan3%,whereasthisgrouprepresents30to40%ofthecities’population!
◦ Arepoorerthancitywideaverages,butnotasmuchasfoundinthespatialanalysis.Thisseemstoindicatethatasub-groupofusersdon’tlivebutprobablyworkinthecatchmentareas.(limitation)
◦ Publicprocurementanalysisoncasestudy(SãoPaulo):◦ Contractualarrangementshaveastrongimpactshapingthelocationandcoverageofsystems.◦ Equityisabsentofthesedocuments !
TheBarcelonastudyOn-goingstudy,nopublicationsyet.
Wefocusedindeepeninginthespatialanalysis:◦ Weincludedaccesstoothercyclinginfrastructure:cyclepaths(generallysegregatedorsemi-segregated).
◦ WedefinedaSpatialEquityIndexinspired intheAvailableHouseholdIncomeIndex(RFD2016,BarcelonaCityCouncil) forthecensusunitsgathering4selectedavailablevariables:
◦ Introductionofthehillinessvariableforvalidation.ØSources:Census,NationalStatisticsInstitute,BarcelonaCityCouncil.
Variables Weight
Highereducationproportion 0,175
Propertyvalue 0,35
SUVproportion 0,15
Non-commercialvehicleownership 0,15
TheBarcelonastudyResults◦ Buffercalculationforbike-sharingstations(NearestNeighbour
Analysis):◦ 150m,vs.500mforBraziliancities.◦ Temporarilythesameforthebicyclelanes.
◦ Catchmentareas:◦ Bicyclelanes:30%◦ Bike-sharingstations:23%
◦ Populationserviced:◦ Bicyclelanes:48%◦ Bike-sharingstations:44%
◦ Nodifferencesfoundforsexrationornon-nationalsratio.
SpatialEquityIndexUnder-servicedcensusunitsarepoorer.◦ Censusunitswithoutbike-sharingservice,have7%lowerindexthanthosewithinthecatchmentarea.
◦ Censusunitswithoutbicyclelanes,have6%lowerindexthanthosewithinthecatchmentarea.
LimitationsandfurtherresearchVariablewishlist (transparency/opendataissues):◦ Refinecatchmentareacalculations.◦ Income.◦ Worklocation,withassociatedsociodemographics (currentlyonlyresidentsandatthelevelofcensusunit).IncludingHomelocationforworkerswithincatchmentareas– intermodality assessment.
◦ Bike-shareuserssurvey.◦ Anyothervariableforaccessibility(notonlydistance?)
Furtheranalysis:◦ Integrationwithpublictransportnetworks– intermodality assessment(tariffintegrationsupport).
◦ Otherbarrierstocyclingandbike-sharingthatmightexplainaloweruptakeofthesystembythecloserresidents- surveys/qualitativemethods.
◦ TesttheIndexwithmorecase-studies,ideallywithvariablesfromwishlist ifavailable,inordertovalidatethemodel.
Spatialequityindex-adjustments
Controllingforhillinessprovedirrelevant(>5%slopeinhalfofthecensusunitarea)
◦ Censusunitswithouthillinesshad3%higherindexthanthehillyones.
Validated forthecaseofBarcelona,butshouldbetestedforothercases.
Conclusions◦ Spatialbike-sharingequitystillneedstobedefined.Weproposeanindexthatmainlydependsonavailabledataandselectedrelevantindicatorsforbike-sharinguse.
◦ Therearelocalvariablesthatneedtobecalculatedforeverycase,e.g.bufferdistance:WeproposetheNearestNeighbourDistanceanalysis,butotherbehaviouralaspectsmightapply(suchasavailabilitytowalktonearestbike-sharestation,ortocycletonearestsegregatedcycleinfrastructure).
◦ Relevanceofbike-sharingforequitycouldbedifferentdependingontheproportionofcycletripsmadebywithpublicbicycles.
◦ Procurementprocessesandregulationsmighthaveabigimpactforspatialdistributionofbike-sharingstations.Politicalaspectsalsounder-studied.
◦ Theconfoundingeffectoftechnicallimitations(suchasslope)forthelocationofstationswasirrelevantinthiscase,butshouldbetakenintoaccountineverycase.
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